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Three self-adaptive multi-objective evolutionary algorithms for a triple-objective project scheduling problem

机译:求解三目标项目调度问题的三种自适应多目标进化算法

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摘要

Finding a Pareto-optimal frontier is widely favorable among researchers to model existing conflict objectives in an optimization problem. Project scheduling is a well-known problem in which investigating a combination of goals eventuate in a more real situation. Although there are many different types of objectives based on the situation on hand, three basic objectives are the most common in the literature of the project scheduling problem. These objectives are: (ⅰ) the minimization of the makespan, (ⅱ) the minimization of the total cost associated with the resources, and (ⅲ) the minimization of the variability in resources usage. In this paper, three genetic-based algorithms are proposed for approximating the Pareto-optimal frontier in project scheduling problem where the above three objectives are simultaneously considered. For the above problem, three self-adaptive genetic algorithms, namely (ⅰ) A two-stage multi-population genetic algorithm (MPGA), (ⅱ) a two-phase subpopulation genetic algorithm (TPSPGA), and (ⅲ) a non-dominated ranked genetic algorithm (NRGA) are developed. The algorithms are tested using a set of instances built from benchmark instances existing in the literature. The performances of the algorithms are evaluated using five performance metrics proposed in the literature. Finally according to the technique for order preference by similarity to ideal solution (TOPSIS) the self-adaptive NRGA gained the highest preference rank, followed by the self-adaptive TPSPGA and MPGA, respectively.
机译:在研究人员中找到帕累托最优边界对优化问题中的现有冲突目标建模具有广泛的优势。项目调度是一个众所周知的问题,其中在更实际的情况下最终要研究目标的组合。尽管根据当前情况有许多不同类型的目标,但是在项目调度问题的文献中,三个基本目标是最常见的。这些目标是:(ⅰ)最小化制造期限,(ⅱ)最小化与资源相关的总成本,以及(ⅲ)最小化资源使用的可变性。本文提出了三种基于遗传的算法来近似同时考虑以上三个目标的项目调度问题中的帕累托最优边界。针对上述问题,采用了三种自适应遗传算法,即(ⅰ)两阶段多种群遗传算法(MPGA),(ⅱ)两阶段亚种群遗传算法(TPSPGA)和(ⅲ)非自适应遗传算法。开发了主导排序遗传算法(NRGA)。使用从文献中现有的基准实例构建的一组实例对算法进行测试。使用文献中提出的五个性能指标评估算法的性能。最终,根据与理想解决方案(TOPSIS)相似的顺序偏好技术,自适应NRGA获得了最高的优先级,其次是自适应TPSPGA和MPGA。

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